A probabilistic model for detecting rigid domains in protein structures

2016 | conference paper. A publication with affiliation to the University of Göttingen.

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​A probabilistic model for detecting rigid domains in protein structures​
Thach Nguyen, T. N. & Habeck, M. ​ (2016)
Bioinformatics32(17) pp. 710​-717. ​15th European Conference on Computational Biology (ECCB)​, The Hague, NETHERLANDS.
Oxford​: Oxford Univ Press. DOI: https://doi.org/10.1093/bioinformatics/btw442 

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Authors
Thach Nguyen, Thach Nguyen; Habeck, Michael 
Abstract
Motivation: Large-scale conformational changes in proteins are implicated in many important biological functions. These structural transitions can often be rationalized in terms of relative movements of rigid domains. There is a need for objective and automated methods that identify rigid domains in sets of protein structures showing alternative conformational states. Results: We present a probabilistic model for detecting rigid-body movements in protein structures. Our model aims to approximate alternative conformational states by a few structural parts that are rigidly transformed under the action of a rotation and a translation. By using Bayesian inference and Markov chain Monte Carlo sampling, we estimate all parameters of the model, including a segmentation of the protein into rigid domains, the structures of the domains themselves, and the rigid transformations that generate the observed structures. We find that our Gibbs sampling algorithm can also estimate the optimal number of rigid domains with high efficiency and accuracy. We assess the power of our method on several thousand entries of the DynDom database and discuss applications to various complex biomolecular systems.
Issue Date
2016
Status
published
Publisher
Oxford Univ Press
Journal
Bioinformatics 
Conference
15th European Conference on Computational Biology (ECCB)
Conference Place
The Hague, NETHERLANDS
ISSN
1460-2059; 1367-4803

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